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首页> 外文期刊>IEEE Transactions on Signal Processing >A Weighted Approach for Sparse Signal Support Estimation with Application to EEG Source Localization
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A Weighted Approach for Sparse Signal Support Estimation with Application to EEG Source Localization

机译:稀疏信号支持估计的加权方法及其在脑电信号源定位中的应用

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In sparse signal recovery problems, 11-norm minimization is typically used as an alternative to more complex 10-norm minimization. The range space property (RSP) provides the conditions under which the least 11 -norm solution is equal to at most one of the least 10-norm solutions. These conditions depend on the sensing matrix and the support of the underlying sparse solution. In this paper, we address the problem of recovering sparse signals by weighting the corresponding sensing matrix with a diagonal matrix. We show that by appropriately choosing the weights, we can formulate an 11-norm minimization problem that satisfies the RSP, even if the original problem does not. By solving the weighted problem we can obtain the support of the original problem. We provide the conditions which the weights must satisfy, for both noise free and noisy cases. Although the precise conditions involve information about the support of the sparse vector, the class of good weights is very wide, and in most cases encompasses an estimate of the underlying vector obtained via a conventional method, i.e., a method that does not encourage sparsity. The proposed approach is a good candidate for Electroencephalography (EEG) sparse source localization, where the corresponding sensing matrix has high coherence. The performance of the proposed approach is evaluated via simulations and also via experiments on localizing active sources in the brain corresponding to an auditory task from EEG recordings of a human subject.
机译:在稀疏信号恢复问题中,通常使用11范数最小化来替代更复杂的10范数最小化。范围空间属性(RSP)提供了至少11个范数解至少等于至少10个范数解之一的条件。这些条件取决于传感矩阵和底层稀疏解决方案的支持。在本文中,我们通过用对角矩阵对相应的传感矩阵进行加权来解决恢复稀疏信号的问题。我们表明,通过适当地选择权重,我们可以制定一个满足RSP的11范数最小化问题,即使原始问题没有。通过解决加权问题,我们可以获得原始问题的支持。对于无噪声和嘈杂的情况,我们提供了砝码必须满足的条件。尽管精确条件涉及有关稀疏向量的支持的信息,但是良好权重的类别非常广泛,并且在大多数情况下包括对通过常规方法(即不鼓励稀疏性的方法)获得的基础向量的估计。所提出的方法是脑电图(EEG)稀疏源定位的良好候选者,其中相应的传感矩阵具有较高的相干性。所提出的方法的性能通过模拟以及通过在大脑中定位与人类对象的EEG录音中的听觉任务相对应的活动源的实验进行评估。

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